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arxiv: 1511.02345 · v1 · pith:TWIWSPEUnew · submitted 2015-11-07 · 📊 stat.AP · physics.data-an

Construction of SDE-based wind speed models with exponential autocorrelation

classification 📊 stat.AP physics.data-an
keywords modelsspeedwindautocorrelationprobabilityexponentialbuilddistribution
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This paper provides a systematic method to build wind speed models based on stochastic differential equations (SDEs). The resulting models produce stochastic processes with a given probability distribution and exponential decaying autocorrelation function. The only information needed to build the models is the probability density function of the wind speed and its autocorrelation coefficient. Unlike other methods previously proposed in the literature, the proposed method leads to models able to reproduce an exact exponential autocorrelation even if the probability distribution is not Gaussian. A sufficient condition for the property above is provided. The paper includes the explicit formulation of SDE-based wind speed models obtained from several probability distributions used in the literature to describe different wind speed behaviors.

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